Sci. Program. | 2021

Support Vector Machine-Based Backprojection Algorithm for Detection of Gastric Cancer Lesions with Abdominal Endoscope Using Magnetic Resonance Imaging Images

 
 
 
 

Abstract


+is study was to analyze the diagnostic value of magnetic resonance imaging (MRI) for gastric cancer (GC) lesions and the treatment effect of complete laparoscopic radical resection (CLSRR). Amalignant tumor recognition algorithmwas constructed in this study based on the backprojection (BP) and support vector machine (SVM), which was named BPS. 78GC patients were divided into an experimental group (received CLSRR) and a control group (received assisted laparoscopic radical resection (ALSRR)), with 39 cases in each group. It was found that the BPS algorithm showed lower relative mean square error (MSE) in axle x (OMSE, x) and axle y (OMSE, x), but the classification accuracy (CA) was the opposite (P< 0.05). +e postoperative hospital stay, analgesia duration, first exhaust time (FET), and first off-bed activity time (FOBA) for patients in the experimental group were less (P< 0.05). +e operation time of the experimental group (270.56± 90.55min) was significantly longer than that of the control group (228.07± 75.26min) (P< 0.05). +ere were 3 cases of anastomotic fistula, 1 case of acute peritonitis, and 2 cases of lung infections in the experimental group, which were greatly less than those in the control group (7 cases, 4 cases, and 3 cases) (P< 0.05). In short, the BPS algorithm was superior in processing MRI images and could improve the diagnostic effect of MRI images.+e CLSRR could reduce the length of hospital stay and the probability of complications in GC patients, so it could be used as a surgical plan for the clinical treatment of advanced GC.

Volume 2021
Pages 9964203:1-9964203:8
DOI 10.1155/2021/9964203
Language English
Journal Sci. Program.

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